BioGPS
  • Home
  • Help
  • Plugins
  • Datasets
  • Sign Up
  • Login
Examples: Gene Symbol(s), Gene Ontology, Splicing plugins, Melanoma datasets
advanced
Home › Dataset Library › Transcription profiling of human Wilms tumor samples to predicting relapse in favorable histology cases

Dataset: Transcription profiling of human Wilms tumor samples to predicting relapse in favorable histology cases

[u"The gene expression patterns of favorable histology Wilms tumors (FHWT) that relapsed were compared with those that did not relapse...

Registered by ArrayExpress Uploader
View Dataset

[u"The gene expression patterns of favorable histology Wilms tumors (FHWT) that relapsed were compared with those that did not relapse using oligonucleotide arrays; Description: 250 FHWT of all stages enriched for relapses treated on National Wilms Tumor Study 5 passed quality parameters and were suitable for analysis using oligonucleotide arrays. Relapse risk stratification utilized Support Vector Machine; two and ten fold cross-validation was applied. The number of genes associated with relapse was less than that predicted by chance alone for 106 patients (32 relapses) with stages I and II FHWT and no further analyses were performed. This number was greater than expected by chance for 76 local stage III patients. Cross validation including an additional 68 local stage III patients (total 144 patients, 53 relapses) demonstrated that classifiers for relapse composed of 50 genes were associated with a median sensitivity of 47%, specificity 70%, and total error rate of 38%. Analysis of genes differentially expressed in relapse patients revealed apoptosis, Wnt signaling, IGF pathway, and epigenetic modification to be mechanisms important in relapse. Potential therapeutic targets include FRAP/MTOR and CD40. Experiment Overall Design: 144 stage 3 FHWT, with fifty-three relapses (cases) and ninety-one non-relapses (controls) with a minimum of three years follow-up, included all relapses and a 30% random selection of non-relapses for which frozen tumor tissue was available who passed all quality control parameters. The NWTS-5 protocol was approved by the review boards of institutions that registered patients. Histological diagnosis and local stage were confirmed by central review. Experiment Overall Design: Quality control steps taken: Experiment Overall Design: 1. Samples were snap frozen immediately following surgery and were mailed on dry ice to the Tumor Bank and retained at -80C. Experiment Overall Design: 2. Frozen sections were evaluated histologically and tumors with less than 80% viable tumor cellularity were excluded. Experiment Overall Design: 3. Array images were assessed by eye to confirm scanner alignment and the absence of significant bubbles or scratches. Experiment Overall Design: 4. Samples for which the 3'/5' ratios for GAPDH were greater than 3.2 were excluded. Experiment Overall Design: 5. The BioB spike controls were confirmed as present; BioC, BioD and cre were confirmed as increasing intensity. Experiment Overall Design: 6. When scaled to a target intensity of 2500, scaling factors were between 12 and 53; background levels were 34 \u2013 115: Q values were 1.3 \u2013 3.7 and mean intensities were within acceptable limits. Experiment Overall Design: 7. The range of percent present calls was from 38% to 52%. Experiment Overall Design: 8. Verification of gene expression was performed utilizing quantitative RT-PCR for five genes. \xa0\xa0 Experiment Overall Design: Statistical Analysis: Positional-dependent-nearest-neighbor model (PDNN) software was used to translate the scanned images into expression analysis files and to normalize the data across all arrays (", {u'a': {u'href': u'http://odin.mdacc.tmc.edu/~zhangli/PerfectMatch/', u'target': u'_blank', u'$': u'http://odin.mdacc.tmc.edu/~zhangli/PerfectMatch/'}}, u'). Genes with maximum expression less than a log scale of 6 across all tumors and Affymetrix control genes were excluded, resulting in 20,931 probe sets for analysis. Support Vector Machine (SVM) as developed by Chang and Lin (', {u'a': {u'href': u'http://www.csie.ntu.edu.tw/~cjlin/libsvm', u'target': u'_blank', u'$': u'http://www.csie.ntu.edu.tw/~cjlin/libsvm'}}, u') and implemented in an R software package, e1071 was chosen for relapse risk stratification using the p-value of the t-test comparison between case and control to select the genes. Using all 144 tumors, 109 genes were identified with p-value <0.001 and are provided in the data table labelled "t-test comparison between case and control" (ie, Supplemental table 2, in related publication)." Two and ten fold cross validations were utilized to investigate the ability of classifiers established in randomly selected training set to predict relapse in an independent test set comprised of the remaining tumors. For two-fold cross validation, the dataset was randomly divided 500 times into training and corresponding test sets of equal size, each including half the patients who relapsed. A classifier for relapse was identified for each training set and used to assign tumors in the corresponding test set to low and high risk categories. The training and test sets were then swapped. The number of top K genes in each classifier evaluated ranged from 1-150. Therefore, a total of 150,000 different classifiers were developed, one for each value of K from 1-150, for each of the 1,000 (500*2) training sets. For ten-fold cross validation the dataset was randomly divided 500 times into ten groups of approximately equal size. Each group included approximately the same number of relapses. For each such group, a classifier was built with the remaining 9/10 of the samples and then used to categorize tumors in the group as low or high risk; the process was repeated until all tumor samples were categorized as low or high risk. For all the cross validation procedures, to avoid gene-selection bias, classifiers were completely rebuilt in each cross validation iteration.']

Species:
human

Samples:
144

Source:
E-GEOD-10320

Updated:
Dec.12, 2014

Registered:
Jun.19, 2014


Factors: (via ArrayExpress)
Sample
GSE10320GSM260840
GSE10320GSM260822
GSE10320GSM260837
GSE10320GSM260857
GSE10320GSM260731
GSE10320GSM260813
GSE10320GSM260852
GSE10320GSM260764
GSE10320GSM260802
GSE10320GSM260831
GSE10320GSM260823
GSE10320GSM260854
GSE10320GSM260817
GSE10320GSM260734
GSE10320GSM260858
GSE10320GSM260809
GSE10320GSM260844
GSE10320GSM260777
GSE10320GSM260775
GSE10320GSM260769
GSE10320GSM260728
GSE10320GSM260815
GSE10320GSM260745
GSE10320GSM260750
GSE10320GSM260828
GSE10320GSM260759
GSE10320GSM260868
GSE10320GSM260850
GSE10320GSM260763
GSE10320GSM260785
GSE10320GSM260767
GSE10320GSM260832
GSE10320GSM260800
GSE10320GSM260804
GSE10320GSM260806
GSE10320GSM260803
GSE10320GSM260748
GSE10320GSM260835
GSE10320GSM260733
GSE10320GSM260824
GSE10320GSM260811
GSE10320GSM260859
GSE10320GSM260791
GSE10320GSM260871
GSE10320GSM260779
GSE10320GSM260866
GSE10320GSM260821
GSE10320GSM260760
GSE10320GSM260818
GSE10320GSM260849
GSE10320GSM260732
GSE10320GSM260825
GSE10320GSM260869
GSE10320GSM260755
GSE10320GSM260742
GSE10320GSM260798
GSE10320GSM260836
GSE10320GSM260741
GSE10320GSM260862
GSE10320GSM260730
GSE10320GSM260827
GSE10320GSM260801
GSE10320GSM260812
GSE10320GSM260826
GSE10320GSM260780
GSE10320GSM260752
GSE10320GSM260830
GSE10320GSM260808
GSE10320GSM260792
GSE10320GSM260863
GSE10320GSM260839
GSE10320GSM260784
GSE10320GSM260729
GSE10320GSM260744
GSE10320GSM260751
GSE10320GSM260737
GSE10320GSM260790
GSE10320GSM260736
GSE10320GSM260819
GSE10320GSM260768
GSE10320GSM260847
GSE10320GSM260786
GSE10320GSM260749
GSE10320GSM260834
GSE10320GSM260738
GSE10320GSM260851
GSE10320GSM260794
GSE10320GSM260776
GSE10320GSM260762
GSE10320GSM260853
GSE10320GSM260754
GSE10320GSM260865
GSE10320GSM260757
GSE10320GSM260816
GSE10320GSM260810
GSE10320GSM260789
GSE10320GSM260758
GSE10320GSM260761
GSE10320GSM260739
GSE10320GSM260746
GSE10320GSM260735
GSE10320GSM260778
GSE10320GSM260855
GSE10320GSM260773
GSE10320GSM260772
GSE10320GSM260783
GSE10320GSM260795
GSE10320GSM260771
GSE10320GSM260747
GSE10320GSM260743
GSE10320GSM260788
GSE10320GSM260807
GSE10320GSM260848
GSE10320GSM260787
GSE10320GSM260740
GSE10320GSM260770
GSE10320GSM260793
GSE10320GSM260861
GSE10320GSM260833
GSE10320GSM260870
GSE10320GSM260846
GSE10320GSM260799
GSE10320GSM260782
GSE10320GSM260774
GSE10320GSM260753
GSE10320GSM260845
GSE10320GSM260820
GSE10320GSM260838
GSE10320GSM260867
GSE10320GSM260765
GSE10320GSM260841
GSE10320GSM260781
GSE10320GSM260864
GSE10320GSM260797
GSE10320GSM260856
GSE10320GSM260829
GSE10320GSM260805
GSE10320GSM260843
GSE10320GSM260766
GSE10320GSM260756
GSE10320GSM260796
GSE10320GSM260814
GSE10320GSM260860
GSE10320GSM260842

Tags

  • central
  • eye
  • median

Other Formats

JSON    XML
  • About
  • Blog
  • Help
  • FAQ
  • Downloads
  • API
  • iPhone App
  • Email updates
© 2025 The Scripps Research Institute. All rights reserved. (ver 94eefe6 )
  • Terms of Use